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Software engineering standards for epidemiological models.

Jack K Horner1, John F Symons2

  • 1Department of Philosophy, University of Kansas, Lawrence, KS, USA. jhorner@cybermesa.com.

History and Philosophy of the Life Sciences
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PubMed
Summary
This summary is machine-generated.

Evaluating software quality in epidemiological simulations involves complex issues. This paper provides guidance for researchers and consumers using a case study of the Imperial College London covid-19 simulator.

Keywords:
COVID-19Public-health policySimulationSoftware engineering

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Area of Science:

  • Epidemiological simulation software quality assessment.
  • Philosophy of science and epidemiology.

Background:

  • Assessing the quality of software for epidemiological simulations presents significant normative and technical challenges.
  • Existing frameworks may not adequately address the complexities of simulation software evaluation.

Purpose of the Study:

  • To address key questions regarding the evaluation of epidemiological simulation software quality.
  • To offer practical guidance for stakeholders involved in epidemiological research.
  • To contextualize these issues within the philosophy of simulation and epidemiology.

Main Methods:

  • A detailed case study analysis of the Imperial College London (ICL) covid-19 simulator.
  • Integration of recent advancements in the epistemology of simulation.
  • Application of philosophical frameworks from the philosophy of epidemiology.

Main Results:

  • Identified critical normative and technical criteria for evaluating simulation software.
  • Provided actionable recommendations for improving software quality assessment.
  • Highlighted the importance of epistemological considerations in simulation research.

Conclusions:

  • The evaluation of epidemiological simulation software requires a rigorous, multi-faceted approach.
  • Practical guidance is essential for ensuring the reliability and validity of simulation-based research.
  • The ICL covid-19 simulator case study offers valuable insights into best practices.